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Incremental Learning of Planning Actions in Model-Based Reinforcement Learning

机译:基于模型的强化学习中规划行动的增量学习

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The soundness and optimality of a plan depends on the correctness of the domain model. Specifying complete domain models can be difficult when interactions between an agent and its environment are complex. We propose a model-based reinforcement learning (MBRL) approach to solve planning problems with unknown models. The model is learned incrementally over episodes using only experiences from the current episode which suits non-stationary environments. We introduce the novel concept of reliability as an intrinsic motivation for MBRL, and a method to learn from failure to prevent repeated instances of similar failures. Our motivation is to improve the learning efficiency and goal-directedness of MBRL. We evaluate our work with experimental results for three planning domains.
机译:计划的声音和最优性取决于域模型的正确性。当代理与其环境之间的交互复杂时,指定完整域模型可能很困难。我们提出了一种基于模型的强化学习(MBRL)方法来解决未知模型的规划问题。该模型在逐渐逐步学习,仅使用当前集中的当前集中的经验来学习。我们将新颖的可靠性概念作为MBRL的内在动机,以及一种学习失败的方法,防止类似失败的重复实例。我们的动机是提高MBRL的学习效率和目标导向性。我们对三个规划领域的实验结果评估我们的工作。

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